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Generative adversarial networks for imputing missing data for big data clinical research.
Dong, Weinan; Fong, Daniel Yee Tak; Yoon, Jin-Sun; Wan, Eric Yuk Fai; Bedford, Laura Elizabeth; Tang, Eric Ho Man; Lam, Cindy Lo Kuen.
Afiliación
  • Dong W; Department of Family Medicine and Primary Care, Faculty of Medicine, University of Hong Kong, Hong Kong, Hong Kong SAR, China.
  • Fong DYT; School of Nursing, Faculty of Medicine, University of Hong Kong, Hong Kong, Hong Kong SAR, China.
  • Yoon JS; Electrical and Computer Engineering Department, University of California, Los Angeles, CA, USA.
  • Wan EYF; Department of Family Medicine and Primary Care, Faculty of Medicine, University of Hong Kong, Hong Kong, Hong Kong SAR, China. yfwan@hku.hk.
  • Bedford LE; Department of Pharmacology and Pharmacy, Faculty of Medicine, University of Hong Kong, Hong Kong, Hong Kong SAR, China. yfwan@hku.hk.
  • Tang EHM; Department of Family Medicine and Primary Care, Faculty of Medicine, University of Hong Kong, Hong Kong, Hong Kong SAR, China.
  • Lam CLK; Department of Family Medicine and Primary Care, Faculty of Medicine, University of Hong Kong, Hong Kong, Hong Kong SAR, China.
BMC Med Res Methodol ; 21(1): 78, 2021 04 20.
Article en En | MEDLINE | ID: mdl-33879090
ABSTRACT

BACKGROUND:

Missing data is a pervasive problem in clinical research. Generative adversarial imputation nets (GAIN), a novel machine learning data imputation approach, has the potential to substitute missing data accurately and efficiently but has not yet been evaluated in empirical big clinical datasets.

OBJECTIVES:

This study aimed to evaluate the accuracy of GAIN in imputing missing values in large real-world clinical datasets with mixed-type variables. The computation efficiency of GAIN was also evaluated. The performance of GAIN was compared with other commonly used methods, MICE and missForest.

METHODS:

Two real world clinical datasets were used. The first was that of a cohort study on the long-term outcomes of patients with diabetes (50,000 complete cases), and the second was of a cohort study on the effectiveness of a risk assessment and management programme for patients with hypertension (10,000 complete cases). Missing data (missing at random) to independent variables were simulated at different missingness rates (20, 50%). The normalized root mean square error (NRMSE) between imputed values and real values for continuous variables and the proportion of falsely classified (PFC) for categorical variables were used to measure imputation accuracy. Computation time per imputation for each method was recorded. The differences in accuracy of different imputation methods were compared using ANOVA or non-parametric test.

RESULTS:

Both missForest and GAIN were more accurate than MICE. GAIN showed similar accuracy as missForest when the simulated missingness rate was 20%, but was more accurate when the simulated missingness rate was 50%. GAIN was the most accurate for the imputation of skewed continuous and imbalanced categorical variables at both missingness rates. GAIN had a much higher computation speed (32 min on PC) comparing to that of missForest (1300 min) when the sample size is 50,000.

CONCLUSION:

GAIN showed better accuracy as an imputation method for missing data in large real-world clinical datasets compared to MICE and missForest, and was more resistant to high missingness rate (50%). The high computation speed is an added advantage of GAIN in big clinical data research. It holds potential as an accurate and efficient method for missing data imputation in future big data clinical research. TRIAL REGISTRATION ClinicalTrials.gov ID NCT03299010 ; Unique Protocol ID HKUCTR-2232.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Proyectos de Investigación / Macrodatos Tipo de estudio: Etiology_studies / Guideline / Incidence_studies / Observational_studies / Risk_factors_studies Límite: Humans Idioma: En Revista: BMC Med Res Methodol Asunto de la revista: MEDICINA Año: 2021 Tipo del documento: Article País de afiliación: China

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Proyectos de Investigación / Macrodatos Tipo de estudio: Etiology_studies / Guideline / Incidence_studies / Observational_studies / Risk_factors_studies Límite: Humans Idioma: En Revista: BMC Med Res Methodol Asunto de la revista: MEDICINA Año: 2021 Tipo del documento: Article País de afiliación: China
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